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  • 1
    Online Resource
    Online Resource
    London :Bloomsbury Publishing Plc,
    Keywords: Biology-Classification. ; Electronic books.
    Type of Medium: Online Resource
    Pages: 1 online resource (170 pages)
    Edition: 1st ed.
    ISBN: 9781408820353
    DDC: 570.14
    Language: English
    Note: Cover -- Title Page -- Dedication -- Contents -- Drosera rotundifolia -- Prologue -- Viburnum opulus -- Chapter I -- Sorex araneus -- Chapter II -- Batrachoides pacifici -- Chapter III -- Ballocephala verrucospora -- Chapter IV -- Gorilla gorilla gorilla -- Chapter V -- Equisetum palustre brevioribus foliis polyspermon -- Chapter VI -- Linnaea borealis -- Chapter VII -- Amphibalanus improvisus -- Chapter VIII -- Phylloscopus trochiloides -- Chapter IX -- Dendrelaphis caudolineatus -- Chapter X -- Hygrocybe pratensis -- Epilogue -- Glossary -- Notes to the Text -- Bibliography -- Acknowledgements -- A Note on the Author -- eCopyright.
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  • 2
    Publication Date: 2015-04-18
    Description: Background: Manual eligibility screening (ES) for a clinical trial typically requires a labor-intensive review of patient records that utilizes many resources. Leveraging state-of-the-art natural language processing (NLP) and information extraction (IE) technologies, we sought to improve the efficiency of physician decision-making in clinical trial enrollment. In order to markedly reduce the pool of potential candidates for staff screening, we developed an automated ES algorithm to identify patients who meet core eligibility characteristics of an oncology clinical trial. Methods: We collected narrative eligibility criteria from ClinicalTrials.gov for 55 clinical trials actively enrolling oncology patients in our institution between 12/01/2009 and 10/31/2011. In parallel, our ES algorithm extracted clinical and demographic information from the Electronic Health Record (EHR) data fields to represent profiles of all 215 oncology patients admitted to cancer treatment during the same period. The automated ES algorithm then matched the trial criteria with the patient profiles to identify potential trial-patient matches. Matching performance was validated on a reference set of 169 historical trial-patient enrollment decisions, and workload, precision, recall, negative predictive value (NPV) and specificity were calculated. Results: Without automation, an oncologist would need to review 163 patients per trial on average to replicate the historical patient enrollment for each trial. This workload is reduced by 85% to 24 patients when using automated ES (precision/recall/NPV/specificity: 12.6%/100.0%/100.0%/89.9%). Without automation, an oncologist would need to review 42 trials per patient on average to replicate the patient-trial matches that occur in the retrospective data set. With automated ES this workload is reduced by 90% to four trials (precision/recall/NPV/specificity: 35.7%/100.0%/100.0%/95.5%). Conclusion: By leveraging NLP and IE technologies, automated ES could dramatically increase the trial screening efficiency of oncologists and enable participation of small practices, which are often left out from trial enrollment. The algorithm has the potential to significantly reduce the effort to execute clinical research at a point in time when new initiatives of the cancer care community intend to greatly expand both the access to trials and the number of available trials.
    Electronic ISSN: 1472-6947
    Topics: Computer Science , Medicine
    Published by BioMed Central
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